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A sun-crown-sensor model and adapted C-correction logic for topographic correction of high resolution forest imagery

机译:太阳冠传感器模型和自适应C校正逻辑可用于高分辨率森林图像的地形校正

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摘要

Canopy shadowing mediated by topography is an important source of radiometric distortion on remote sensing images of rugged terrain. Topographic correction based on the sun-canopy-sensor (SCS) model significantly improved over those based on the sun-terrain-sensor (STS) model for surfaces with high forest canopy cover, because the SCS model considers and preserves the geotropic nature of trees. The SCS model accounts for sub-pixel canopy shadowing effects and normalizes the sunlit canopy area within a pixel. However, it does not account for mutual shadowing between neighboring pixels. Pixel-to-pixel shadowing is especially apparent for fine resolution satellite images in which individual tree crowns are resolved. This paper proposes a new topographic correction model: the sun-crown-sensor (SCnS) model based on high-resolution satellite imagery (IKONOS) and high-precision LiDAR digital elevation model. An improvement on the C-correction logic with a radiance partitioning method to address the effects of diffuse irradiance is also introduced (SCnS + C). In addition, we incorporate a weighting variable, based on pixel shadow fraction, on the direct and diffuse radiance portions to enhance the retrieval of at-sensor radiance and reflectance of highly shadowed tree pixels and form another variety of SCnS model (SCnS + W). Model evaluation with IKONOS test data showed that the new SCnS model outperformed the STS and SCS models in quantifying the correlation between terrain-regulated illumination factor and at-sensor radiance. Our adapted C-correction logic based on the sun-crown-sensor geometry and radiance partitioning better represented the general additive effects of diffuse radiation than C parameters derived from the STS or SCS models. The weighting factor W_t also significantly enhanced correction results by reducing within-class standard deviation and balancing the mean pixel radiance between sunlit and shaded slopes. We analyzed these improvements with model comparison on the red and near infrared bands. The advantages of SCnS + C and SCnS + W on both bands are expected to facilitate forest classification and change detection applications.
机译:地形介导的树冠阴影是崎terrain地形的遥感影像上辐射变形的重要来源。对于具有高森林覆盖率的表面,基于太阳冠层传感器(SCS)模型的地形校正比基于太阳地形传感器(STS)模型的地形校正显着改善,因为SCS模型考虑并保留了树木的地性性质。 SCS模型考虑了子像素冠层阴影效果,并对像素内的阳光冠层区域进行了归一化。但是,它不考虑相邻像素之间的相互阴影。像素到像素的阴影对于分辨单个树冠的高分辨率卫星图像尤为明显。本文提出了一种新的地形校正模型:基于高分辨率卫星图像(IKONOS)的太阳冠传感器(SCnS)模型和高精度LiDAR数字高程模型。还介绍了一种使用辐射度分割方法来解决C校正逻辑问题的方法,以解决漫射光的影响(SCnS + C)。此外,我们在直接和漫射辐射部分上结合了基于像素阴影分数的加权变量,以增强对高阴影树像素的传感器辐射和反射率的检索,并形成了另一种SCnS模型(SCnS + W) 。用IKONOS测试数据进行的模型评估表明,新的SCnS模型在量化地形调节照明因子与传感器辐射强度之间的相关性方面优于STS和SCS模型。与基于STS或SCS模型的C参数相比,我们基于日冕传感器的几何形状和辐射度划分调整的C校正逻辑更好地表示了散射辐射的一般加性效应。加权因子W_t还通过减少类内标准偏差并平衡了日光和阴影斜率之间的平均像素辐射度,显着增强了校正结果。我们通过对红色和近红外波段进行模型比较分析了这些改进。 SCnS + C和SCnS + W在两个频段上的优势有望促进森林分类和变化检测应用。

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  • 作者单位

    University of Nevada, Reno, Department of Natural Resources and Environmental Science, 1664 N. Virginia St., Mail Stop 186, Reno, NV 89557, USA,University of Goettingen, Department of Bioclimatology, Buesgenweg 2, 37077 Goettingen, Germany;

    University of Natural Resources and Life Sciences (BOKU), Institute of Surveying, Remote Sensing and Land Information, Peter-Jordan-Str. 82, 1190 Vienna, Austria;

    University of Nevada, Reno, Department of Natural Resources and Environmental Science, 1664 N. Virginia St., Mail Stop 186, Reno, NV 89557, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Diffuse radiation; Canopy shadowing; Radiometric correction; Topographic roughness; Moving window; IKONOS;

    机译:漫辐射;遮篷遮蔽;辐射校正地形粗糙度移动窗口;伊科诺斯;
  • 入库时间 2022-08-18 03:34:15

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